Izvestiya of Saratov University.

Mathematics. Mechanics. Informatics

ISSN 1816-9791 (Print)
ISSN 2541-9005 (Online)


For citation:

Kulakov S. M., Koynov R. S., Taraborina E. N. On the functional structure of the ergatic system of precedent management of a complex production facility. Izvestiya of Saratov University. Mathematics. Mechanics. Informatics, 2022, vol. 22, iss. 2, pp. 241-249. DOI: 10.18500/1816-9791-2022-22-2-241-249, EDN: GLMNHR

This is an open access article distributed under the terms of Creative Commons Attribution 4.0 International License (CC-BY 4.0).
Published online: 
31.05.2022
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English
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Article
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517.98
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GLMNHR

On the functional structure of the ergatic system of precedent management of a complex production facility

Autors: 
Kulakov Stanislav Matveevich, Siberian State Industrial University
Koynov Roman Sergeevich, Siberian State Industrial University
Taraborina Elena Nikolaevna, Siberian State Industrial University
Abstract: 

The problem of the formation of the functional structure of the ergatic control system of a complex (poorly formalized) production facility (technological unit, human-technical complex, production) is considered, the solution of which is based on the use of a precedent approach to the development and implementation of control decisions (actions). The formulation of the synthesis problem for the procedure for constructing control solutions in an ergatic system is presented. The description of the classical CBR-cycle of making precedent decisions is given and its modification is developed, taking into account the peculiarities of the process of managing a complex object. The main subsystems and enlarged functional blocks of the control system are determined. An example of the application of the functional structure of the precedent management system as applied to the production process of steelmaking in an oxygen converter is presented. 

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Received: 
24.11.2021
Accepted: 
27.12.2021
Published: 
31.05.2022